A Bayesian approach to star-galaxy classification
Marc Henrion, Daniel J. Mortlock, David J. Hand, Axel Gandy

TL;DR
This paper introduces a Bayesian framework for star-galaxy classification that effectively utilizes limited morphological data near detection limits, improving classification accuracy and providing probabilistic outputs.
Contribution
It develops a general Bayesian formalism for star-galaxy classification that incorporates multiple measurements and prior knowledge, with practical approximations that minimize reliance on color information.
Findings
Bayesian probabilities align well with deep SDSS classifications
Reduced mismatch rate compared to UKIDSS pipeline classifier
Effective near the survey detection limit
Abstract
Star-galaxy classification is one of the most fundamental data-processing tasks in survey astronomy, and a critical starting point for the scientific exploitation of survey data. For bright sources this classification can be done with almost complete reliability, but for the numerous sources close to a survey's detection limit each image encodes only limited morphological information. In this regime, from which many of the new scientific discoveries are likely to come, it is vital to utilise all the available information about a source, both from multiple measurements and also prior knowledge about the star and galaxy populations. It is also more useful and realistic to provide classification probabilities than decisive classifications. All these desiderata can be met by adopting a Bayesian approach to star-galaxy classification, and we develop a very general formalism for doing so. An…
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